论文标题
在单个共享波导光网络中使用III-V纳米线组件实施昆虫大脑计算电路
Implementing an insect brain computational circuit using III-V nanowire components in a single shared waveguide optical network
论文作者
论文摘要
光子学的最新发展包括有效的纳米级光电子组件以及用于下波长光操纵的新方法。在这里,我们探讨了神经局计算的基板等设备所提供的潜力。我们提出了一个人工神经网络,其中通过在共享准2D波导中发射和接收重叠的光信号来实现节点之间的加权连通性。与现有的光学溶液相比,这将电路足迹降低至少一个数量级。光学信号的接收,评估和发射是由由已知的高效IIII III-V纳米线光电子构建的神经元样节点进行的。这可以最大程度地减少网络的功耗。为了证明这一概念,我们基于昆虫大脑中央复合导航电路的解剖上正确的,功能正常的模型建立了一个计算模型。我们使用实验派生的参数详细详细模拟了该网络中心部分连接所需的光学和电子零件。结果在完整模型中用作输入,我们证明了保留功能。我们的方法指出了一种通用方法,可大大降低光电神经网络的足迹和提高功率效率,利用光的较高速度和能源效率作为信息的载体。
Recent developments in photonics include efficient nanoscale optoelectronic components and novel methods for sub-wavelength light manipulation. Here, we explore the potential offered by such devices as a substrate for neuromorphic computing. We propose an artificial neural network in which the weighted connectivity between nodes is achieved by emitting and receiving overlapping light signals inside a shared quasi 2D waveguide. This decreases the circuit footprint by at least an order of magnitude compared to existing optical solutions. The reception, evaluation and emission of the optical signals are performed by a neuron-like node constructed from known, highly efficient III-V nanowire optoelectronics. This minimizes power consumption of the network. To demonstrate the concept, we build a computational model based on an anatomically correct, functioning model of the central-complex navigation circuit of the insect brain. We simulate in detail the optical and electronic parts required to reproduce the connectivity of the central part of this network, using experimentally derived parameters. The results are used as input in the full model and we demonstrate that the functionality is preserved. Our approach points to a general method for drastically reducing the footprint and improving power efficiency of optoelectronic neural networks, leveraging the superior speed and energy efficiency of light as a carrier of information.